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Tutoriály na ECML PKDD 2007

Tutoriály na ECML PKDD 2007. ECML/PKDD-2007 Call for Tutorials and Workshops

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Tutoriály na ECML PKDD 2007

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  1. Tutoriály na ECML PKDD 2007 ECML/PKDD-2007 Call for Tutorials and Workshops We invite proposals for half-day tutorials and full day workshops. Proposals for a workshop/tutorial combination are also welcome (see below). The scope of the proposal should be consistent with the conference themes as described in the ECML/PKDD-2007 Call for Papers. Workshops: These provide an opportunity to discuss current topics in machine learning and/or data mining in a small and interactive atmosphere. Thus, any topic that is of current interest to a sufficient number of participants from the two communities could be the focus of a workshop. Workshops can concentrate in-depth on research topics, but can also be devoted to application issues, or to questions concerning the economic and social aspects of machine learning and data mining. Multidisciplinary workshops that bring together researchers and practitioners from different communities such as advanced computing and GRID, database, ontology, life science, cognitive science, economics and finance, mathematics and operations research, are welcome.

  2. Tutoriály na ECML PKDD 2007 ECML/PKDD-2007 Call for Tutorials and Workshops Tutorials: These are intended to provide independent instruction on topics from the field of machine learning or data mining. Introductions to other research domains that could fertilize the machine learning/data mining field with new challenges or solutions are also welcome provided that there is a clear relation to machine learning/data mining. Each tutorial should: • attract a large enough audience; • be presented by highly qualified persons with a demonstrable background and teaching experience in the tutorial area; • be well-focused, so that its core content can be covered in a 3.5 hour tutorial slot (incl. a 30 minute break); • be accompanied by comprehensive notes written in clear, standard English; • cope with the wide diversity in the ECML/PKDD audience (preferable), or else be accompanied by a complete list of tutorial prerequisites; • cover the overall picture, without a bias towards the presenters' own work; • be free of commercial or sales-oriented material.

  3. Tutoriály na ECML PKDD 2007 State-of-the-Art in Data Stream Mining - Room 106   Lecturers: Joao Gama, Mohamed Medhat Gaber Exploring the Power of Links in Data Mining - Room 207   Lecturers: Jiawei Han, Xiaoxin Yin, Philip S. Yu The Challenges of the Semantic Web to Machine Learning and Data Mining - Room 107   Lecturer: Francesca A. Lisi Discovering and Tracking User Communities - Room 205   Lecturers: Myra Spiliopoulou, Tanja Falkowski, Giorgos Paliouras Mining Large Graphs: Laws and Tools - Room 107   Lecturers: Christos Faloutsos, Jure Leskovec Knowledge Discovery Standards in Ubiquitous Environments - Room 106   Lecturers: Marko Grobelnik, Michael May, Dennis Wegener An introduction to Statistical Relational Learning - Room 214-215-216   Lecturer: Lise Getoor

  4. http://www.cs.uvm.edu/~icdm/

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